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Designing an adaptive web-based learning system based on students' cognitive styles identified online

机译:基于学生在线识别的认知风格设计自适应的基于网络的学习系统

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This study developed an adaptive web-based learning system focusing on students' cognitive styles. The system is composed of a student model and an adaptation model. It collected students' browsing behaviors to update the student model for unobtrusively identifying student cognitive styles through a multi-layer feed-forward neural network (MLFF). The MLFF was adopted because of its ability on imprecise or incompletely understood data, ability to generalize and learn from specific examples, ability to be quickly updated with extra parameters, and speed in execution making them ideal for real time applications. The system then adaptively recommended learning content presented with a variety of content and interactive components through the adaptation model based on the student cognitive style identified in the student model. The adaptive web interfaces were designed by investigating the relationships between students' cognitive styles and browsing patterns of content and interactive components. Training of the MLFF and an experiment were conducted to examine the accuracy of identifying students' cognitive styles during browsing with the proposed MLFF and the impact of the proposed adaptive web-based system on students' engagement in learning. The training results of the MLFF showed that the proposed system could identify students' cognitive styles with high accuracy and the temporal effects should be considered while identifying students' cognitive styles during browsing. Two factors, the acknowledgment of students' cognitive styles while browsing and the existence of adaptive web interfaces, were used to assign three classes of college freshmen into three groups. The experimental results revealed that the proposed system could have significant impacts on temporal effects on students' engagement in learning, not only for students with cognitive styles known before browsing, but also for students with cognitive styles identified during browsing. The results provide evidence of the effectiveness of the adaptive web-based learning system with students' cognitive styles dynamically identified during browsing, thus validating the research purposes of this study.
机译:这项研究开发了一种基于网络的自适应学习系统,着重于学生的认知风格。该系统由学生模型和适应模型组成。它收集了学生的浏览行为,以通过多层前馈神经网络(MLFF)来更新学生模型,从而毫不干扰地识别学生的认知风格。之所以采用MLFF,是因为它具有处理不精确或不完全理解的数据的能力,具有对特定示例进行概括和学习的能力,能够通过附加参数快速更新的能力,以及执行速度快,使其非常适合实时应用。然后,该系统根据在学生模型中识别出的学生认知风格,通过适应模型自适应地推荐学习内容,其中包含各种内容和交互式组件。通过调查学生的认知风格与内容和交互组件的浏览模式之间的关系来设计自适应Web界面。进行了MLFF的训练和实验,以检验使用建议的MLFF在浏览过程中识别学生的认知风格的准确性,以及建议的基于Web的自适应系统对学生参与学习的影响。 MLFF的训练结果表明,所提出的系统可以高精度地识别学生的认知风格,并且在浏览过程中识别学生的认知风格时应考虑时间效应。使用两个因素,即学生在浏览时的认知方式的认可和自适应Web界面的存在,将三个类别的大学新生分为三组。实验结果表明,提出的系统不仅会对浏览之前已知的认知风格的学生,而且对于浏览期间识别出的认知风格的学生,都可能对学生参与学习的时间影响产生重大影响。结果提供了具有适应性的基于网络的学习系统的有效性的证据,该系统具有在浏览过程中动态识别学生的认知风格,从而验证了本研究的研究目的。

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